| Literature DB >> 30689375 |
Zhe Li1,2, Yiyou Huang1, Yinuo Wu1, Jingyi Chen1, Deyan Wu1, Chang-Guo Zhan2, Hai-Bin Luo1.
Abstract
Accurate prediction of absolute protein-ligand binding free energy could considerably enhance the success rate of structure-based drug design but is extremely challenging and time-consuming. Free energy perturbation (FEP) has been proven reliable but is limited to prediction of relative binding free energies of similar ligands (with only minor structural differences) in binding with a same drug target in practical drug design applications. Herein, a Gaussian algorithm-enhanced FEP (GA-FEP) protocol has been developed to enhance the FEP simulation performance, enabling to efficiently carry out the FEP simulations on vanishing the whole ligand and, thus, predict the absolute binding free energies (ABFEs). Using the GA-FEP protocol, the FEP simulations for the ABFE calculation (denoted as GA-FEP/ABFE) can achieve a satisfactory accuracy for both structurally similar and diverse ligands in a dataset of more than 100 receptor-ligand systems. Further, our GA-FEP/ABFE-guided lead optimization against phosphodiesterase-10 led to the discovery of a subnanomolar inhibitor (IC50 = 0.87 nM, ∼2000-fold improvement in potency) with cocrystal confirmation.Mesh:
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Year: 2019 PMID: 30689375 DOI: 10.1021/acs.jmedchem.8b01763
Source DB: PubMed Journal: J Med Chem ISSN: 0022-2623 Impact factor: 7.446